A discrete memristive heterogeneous neural network with grid multi-windmill hyperchaotic attractors and application in secure communication

Yang, Gang, Wang, Chunhua, Sun, Yichuang and Deng, Quanli (2026) A discrete memristive heterogeneous neural network with grid multi-windmill hyperchaotic attractors and application in secure communication. Mathematics and Computers in Simulation, 249. ISSN 0378-4754
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Dynamic interactions between different neural networks can yield more complex dynamical behaviors. Nevertheless, research on systems composed of heterogeneous neural networks remains insufficiently explored. This study constructs a high-dimensional discrete memristive heterogeneous neural network (DMHGNN) which integrates two distinct neural networks leveraging a discrete memristor as a synaptic connection. Theoretical and numerical simulation results demonstrate that DMHGNN exhibits countless fixed points, different numbers of grid multi-windmill hyperchaotic attractors, and bidirectional initial offset-boosting characteristics. By adjusting the network parameters, the system possesses multiple positive Lyapunov exponents, revealing a more intricate hyperchaotic state and reflecting remarkable dynamical complexity. Furthermore, grid multi-windmill hyperchaotic attractors generated by DMHGNN have been successfully implemented on an FPGA platform. Finally, a DMHGNN-based image secure communication system is designed and evaluated, exhibiting good security performance in experimental validations.

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